Please use this identifier to cite or link to this item: http://hdl.handle.net/10609/137163
Title: A Predictive Analytics Infrastructure to Support a Trustworthy Early Warning System
Author: Baneres, David  
Guerrero-Roldán, Ana-Elena  
Rodríguez-González, M. Elena  
Karadeniz, Abdulkadir
Others: Universitat Oberta de Catalunya (UOC)
Anadolu University
Citation: Baneres, D., Guerrero-Roldán, A. E., Rodríguez-González, M. E., & Karadeniz, A. (2021). A Predictive Analytics Infrastructure to Support a Trustworthy Early Warning System. Applied Sciences 2021, Vol. 11, Page 5781, 11(13), 5781. https://doi.org/10.3390/APP11135781
Abstract: Learning analytics is quickly evolving. Old fashioned dashboards with descriptive information and trends about what happened in the past are slightly substituted by new dashboards with forecasting information and predicting relevant outcomes about learning. Artificial intelligence is aiding this revolution. The accessibility to computational resources has increased, and specific tools and packages for integrating artificial intelligence techniques leverage such new analytical tools. However, it is crucial to develop trustworthy systems, especially in education where skepticism about their application is due to the risk of teachers' replacement. However, artificial intelligence systems should be seen as companions to empower teachers during the teaching and learning process. During the past years, the Universitat Oberta de Catalunya has advanced developing a data mart where all data about learners and campus utilization are stored for research purposes. The extensive collection of these educational data has been used to build a trustworthy early warning system whose infrastructure is introduced in this paper. The infrastructure supports such a trustworthy system built with artificial intelligence procedures to detect at-risk learners early on in order to help them to pass the course. To assess the system's trustworthiness, we carried out an evaluation on the basis of the seven requirements of the European Assessment List for trustworthy artificial intelligence (ALTAI) guidelines that recognize an artificial intelligence system as a trustworthy one. Results show that it is feasible to build a trustworthy system wherein all seven ALTAI requirements are considered at once from the very beginning during the design phase.
Keywords: predictive analytics
artificial intelligence
trustworthy early warning system
standards and guidelines
software engineering in e-learning
DOI: 10.3390/app11135781
Document type: info:eu-repo/semantics/article
Issue Date: 1-Jul-2021
Publication license: http://creativecommons.org/licenses/by/3.0/es/  
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